---
title: "Searching Memories"
description: "Learn how to search for and retrieve content from supermemory"
---

<Accordion title="Best Practices" defaultOpen icon="sparkles">
1. **Query Formulation**:
   - Use natural language queries
   - Include relevant keywords
   - Be specific but not too verbose

2. **Filtering**:
   - Use metadata filters for precision
   - Combine multiple filters when needed
   - Use appropriate thresholds

3. **Performance**:
   - Set appropriate result limits
   - Use specific document/chunk filters
   - Consider response timing

</Accordion>

## Basic Search

To search through your memories, send a POST request to `/search`:

<CodeGroup>

```bash cURL
curl https://api.supermemory.ai/v3/search?q=machine+learning+concepts&limit=10 \
  --request GET \
  --header 'Authorization: Bearer SUPERMEMORY_API_KEY'
```

```typescript Typescript
await client.search.execute({
  q: "machine learning concepts",
  limit: 10,
});
```

```python Python
client.search.execute(
    q="machine learning concepts",
    limit=10
)
```

</CodeGroup>

The API will return relevant matches with their similarity scores:

```json
{
  "results": [
    {
      "documentId": "doc_xyz789",
      "chunks": [
        {
          "content": "Machine learning is a subset of artificial intelligence...",
          "isRelevant": true,
          "score": 0.85
        }
      ],
      "score": 0.95,
      "metadata": {
        "source": "web",
        "category": "technology"
      },
      "title": "Introduction to Machine Learning"
    }
  ],
  "total": 1,
  "timing": 123.45
}
```

## Search Parameters

```json
{
  "q": "search query", // Required: Search query string
  "limit": 10, // Optional: Max results (default: 10)
  "threshold": 0.6, // Optional: Min similarity score (0-1, default: 0.6)
  "containerTag": "user_123", // Optional: Filter by container tag
  "rerank": false, // Optional: Rerank results for better relevance
  "rewriteQuery": false, // Optional: Rewrite query for better matching
  "include": {
    "documents": false, // Optional: Include document metadata
    "summaries": false, // Optional: Include document summaries
    "relatedMemories": false, // Optional: Include related memory context
    "forgottenMemories": false // Optional: Include forgotten memories in results
  },
  "filters": {
    // Optional: Metadata filters
    "AND": [
      {
        "key": "category",
        "value": "technology"
      }
    ]
  }
}
```

## Search Response

The search response includes:

```json
{
  "results": [
    {
      "documentId": "string", // Document ID
      "chunks": [
        {
          // Matching chunks
          "content": "string", // Chunk content
          "isRelevant": true, // Is directly relevant
          "score": 0.95 // Similarity score
        }
      ],
      "score": 0.95, // Document score
      "metadata": {}, // Document metadata
      "title": "string", // Document title
      "createdAt": "string", // Creation date
      "updatedAt": "string" // Last update date
    }
  ],
  "total": 1, // Total results
  "timing": 123.45 // Search time (ms)
}
```

## Including Forgotten Memories

By default, the search API excludes memories that have been marked as forgotten or have passed their expiration date. To include these in your search results, set `include.forgottenMemories` to `true`:

<CodeGroup>

```bash cURL
curl https://api.supermemory.ai/v4/search \
  --request POST \
  --header 'Authorization: Bearer SUPERMEMORY_API_KEY' \
  --header 'Content-Type: application/json' \
  --data '{
    "q": "old project notes",
    "include": {
      "forgottenMemories": true
    }
  }'
```

```typescript Typescript
await client.search.memories({
  q: "old project notes",
  include: {
    forgottenMemories: true
  }
});
```

```python Python
await client.search.memories(
    q="old project notes",
    include={
        "forgottenMemories": True
    }
)
```

</CodeGroup>

<Note>
Forgotten memories are memories that have been explicitly forgotten using the forget API or have passed their automatic expiration date (`forgetAfter`). Including them in search results can help recover information that may still be relevant.
</Note>

## Next Steps

Explore more advanced features in our [API Reference](/api-reference/search-memories/search-memories).
